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MELM-GRBF: A modified version of the extreme learning machine for generalized radial basis function neural networks

机译:MELM-GRBF:极限学习机的改进版本,用于广义径向基函数神经网络

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摘要

In this paper, we propose a methodology for training a new model of artificial neural network called the generalized radial basis function (GRBF) neural network. This model is based on generalized Gaussian distribution, which parametrizes the Gaussian distribution by adding a new parameter x. The generalized radial basis function allows different radial basis functions to be represented by updating the new parameter x. For example, when GRBF takes a value of x =2, it represents the standard Gaussian radial basis function. The model parameters are optimized through a modified version of the extreme learning machine (ELM) algorithm. In the methodology proposed (MELM-GRBF), the centers of each GRBF were taken randomly from the patterns of the training set and the radius and x values were determined analytically, taking into account that the model must fulfil two constraints: locality and coverage. An thorough experimental study is presented to test its overall performance. Fifteen datasets were considered, including binary and multi-class problems, all of them taken from the UCI repository. The MELM-GRBF was compared to ELM with sigmoidal, hard-limit, triangular basis and radial basis functions in the hidden layer and to the ELM-RBF methodology proposed by Huang et al. (2004) [1]. The MELM-GRBF obtained better results in accuracy than the corresponding sigmoidal, hard-limit, triangular basis and radial basis functions for almost all datasets, producing the highest mean accuracy rank when compared with these other basis functions for all datasets.
机译:在本文中,我们提出了一种训练新的人工神经网络模型的方法,该模型称为广义径向基函数(GRBF)神经网络。该模型基于广义高斯分布,该模型通过添加新参数x来对高斯分布进行参数化。广义径向基函数允许通过更新新参数x来表示不同的径向基函数。例如,当GRBF取x = 2的值时,它表示标准的高斯径向基函数。模型参数通过极限学习机(ELM)算法的修改版本进行了优化。在提出的方法(MELM-GRBF)中,从训练集的模式中随机抽取每个GRBF的中心,并通过分析确定半径和x值,同时考虑到模型必须满足两个约束:局部性和覆盖性。进行了全面的实验研究,以测试其总体性能。考虑了15个数据集,包括二元和多类问题,所有这些数据均取自UCI存储库。将MELM-GRBF与在隐蔽层中具有S型,硬极限,三角基和径向基函数的ELM进行了比较,并与Huang等人提出的ELM-RBF方法进行了比较。 (2004)[1]。 MELM-GRBF的精度优于几乎所有数据集的相应S形,硬极限,三角基和径向基函数,与所有其他数据集的这些其他基函数相比,其平均精度等级最高。

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